Global Population in Tableau
Global Population in Tableau
1. Mohammed Saad ALI, Department of AI C DS, methodist College of Engineering and Technology, Hyderabad, India.
2. Sheik Aslam, Department of AI C DS, methodist College of Engineering and Technology, Hyderabad, India.
Guided By :
Dr.Diana Moses, Professor, Department of CSE, Methodist College of Engineering and Technology, Hyderabad, India.
Abstract
This dataset presents a global collection of population and environmental information across multiple countries over different time periods. It combines demographic, geographic, and climate-related variables, including country names, observation dates, hashtags, latitude, longitude, population (in millions), and average temperature (°C). By integrating these attributes into a single dataset, it provides a comprehensive foundation for examining worldwide population trends and their relationship with environmental conditions.
The dataset enables researchers to analyse population distribution across different regions while incorporating spatial information through latitude and longitude coordinates. The inclusion of geographic data supports location-based analysis and mapping, allowing users to identify regional patterns, compare countries, and visualize demographic changes on a global scale. Time-based observations further make it possible to study how populations evolve over different years.
In addition to demographic information, the dataset includes environmental indicators such as average temperature, which can be used to investigate potential relationships between climate conditions and population dynamics. Researchers can explore whether changes in temperature correspond with shifts in population size, urbanization, or regional growth. The hashtag field also provides a categorical element that can be used to group records, identify trends, or support data filtering during analysis.
The dataset is well suited for visualization and exploratory data analysis using business intelligence tools such as Tableau or Power BI. Interactive dashboards, maps, line charts, bar charts, and waterfall charts can effectively present population growth, geographical distribution, and climate comparisons. Such visualizations enable policymakers, researchers, and students to gain meaningful insights from complex global datasets and communicate findings more effectively.